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. 2014 Jun;8(2):323-31.
doi: 10.1007/s11682-013-9255-y.

Human neuroimaging as a "Big Data" science

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Human neuroimaging as a "Big Data" science

John Darrell Van Horn et al. Brain Imaging Behav. 2014 Jun.

Abstract

The maturation of in vivo neuroimaging has led to incredible quantities of digital information about the human brain. While much is made of the data deluge in science, neuroimaging represents the leading edge of this onslaught of "big data". A range of neuroimaging databasing approaches has streamlined the transmission, storage, and dissemination of data from such brain imaging studies. Yet few, if any, common solutions exist to support the science of neuroimaging. In this article, we discuss how modern neuroimaging research represents a multifactorial and broad ranging data challenge, involving the growing size of the data being acquired; sociological and logistical sharing issues; infrastructural challenges for multi-site, multi-datatype archiving; and the means by which to explore and mine these data. As neuroimaging advances further, e.g. aging, genetics, and age-related disease, new vision is needed to manage and process this information while marshalling of these resources into novel results. Thus, "big data" can become "big" brain science.

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Figures

Figure 1
Figure 1
The amount of acquired neuroimaging data reported from published articles in representative isues of the journal NeuroImage has doubled every 26 months and can expect to top 20GB of purely raw data on average per study in only a few years. Amassing, curating, storing, and sharing of such data from neuroimaging archives presents a growing big data challenge.

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